Data Architect

LUMORA SOLUTIONS
London
4 days ago
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Job Title: Data Architect

Location: London (Hybrid – 1 day per week in the office)

Salary: Up to £100,000 - £120,000 basic + bonus

Our client is a leading data and analytics consultancy helping organisations modernise their data platforms and unlock value through cloud, engineering, and AI-driven analytics. They work with enterprise clients across multiple industries, delivering scalable, future-proof data solutions that combine strong engineering with pragmatic architecture.

As part of continued growth in the UK, they are looking to hire a Data Architect who has solid foundational data architecture experience and is keen to deepen their exposure to modern platforms such as Databricks, Snowflake, and Generative AI.

The Opportunity

  • Contribute to the design and evolution of modern data architectures across cloud environments
  • Support the modernisation and optimisation of enterprise data platforms, including ingestion, transformation, and analytics layers
  • Work closely with senior architects and engineers, gaining hands-on experience with Databricks, Snowflake, and emerging GenAI use cases
  • Balance architectural thinking with hands-on delivery in real-world client environments

What you’ll be doing

  • Supporting the design of scalable, secure data architectures on cloud platforms...

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